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Approach for Robust Joint Actuator and Sensor Fault Estimation: Application to a DC Servo-Motor System
Abstract
:1. Introduction
- to propose a novel fault estimator structure capable of estimating possibly simultaneous sensor and actuator faults;
- the proposed estimator can tackle both an exogenous process disturbance with finite energy and a random measurement noise;
- the estimator design procedure allows the minimizing of noise/disturbance effects on both state and fault estimation errors;
- the estimator design procedure yields a fault estimator with a guaranteed trade-off between fault and state estimation quality.
2. Preliminaries
- Assumption 1: The process of exogenous disturbance is bounded in the sense, i.e., ;
- Assumption 2: The measurement noise is a random sequence;
- Assumption 3: Actuator and sensor faults’ rates of change , are bounded in the and sense, i.e., and , respectively.
3. Problem Formulation
4. Fault Estimator Design
5. An Alternative Approach to Fault Estimator Design
6. Final Design Procedure of the Fault Estimation Scheme
- Offline computation:
- Iteratively change the values of and .
- Solve the optimization problem
- If the attenuation levels are not satisfactory, then go to Step 1, or else obtain matrices and and calculate:
- Online computation:
7. Illustrative Examples
7.1. Analysis of Trade-off—DC Servo-Motor
7.2. Simulation Case—DC Servo-Motor
- FS1
- FS2
- FS3
7.3. Analysis of Trade-off—Three-Tank System
7.4. Simulation Case—Three-Tank System
- FS1
- FS2
- FS3
8. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Proposed (T1) | Hilhorst et al. (T2) | |
---|---|---|
0.3193 | 1.6467 | |
0.5666 | 1.1870 | |
0.3510 | 0.4597 | |
0.9176 | 0.6547 | |
0.3227 | 1.6467 | |
0.5948 | 0.9920 | |
1.0000 | 3.2999 | |
0.9595 | 2.2283 | |
0.0404 | 1.0716 | |
10.0000 | 10.0000 | |
9.6806 | 7.41762 | |
0.3193 | 2.5823 |
Proposed (T1) | Hilhorst et al. (T2) | |
---|---|---|
0.7658 | 0.7701 | |
0.0079 | 0.0089 | |
0.7579 | 0.7611 | |
0.7658 | 0.7701 | |
0.0251 | 0.0252 | |
0.7406 | 0.7449 | |
0.0700 | 0.7000 | |
0.0088 | 0.0148 | |
0.0611 | 0.6851 | |
2.0000 | 4.0000 | |
1.7528 | 1.9587 | |
0.2471 | 2.0412 |
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Buciakowski, M.; Pazera, M.; Witczak, M.
A Combined
Buciakowski M, Pazera M, Witczak M.
A Combined
Buciakowski, Mariusz, Marcin Pazera, and Marcin Witczak.
2019. "A Combined
Buciakowski, M., Pazera, M., & Witczak, M.
(2019). A Combined